Understanding ETNs on VIX Futures

41
Electronic copy available at: http://ssrn.com/abstract=2043061 Understanding ETNs on VIX Futures Carol Alexander and Dimitris Korovilas ICMA Centre, Henley Business School at Reading This Version: May 19, 2012 ABSTRACT This paper aims to improve transparency in the market for direct, leveraged and inverse exchange- traded notes (ETNs) on VIX futures. The first VIX futures ETNs were issued in 2009. Now there are about 30 of them, with a market cap of about $3 billion and trading volume on some of these products can reach $5 billion per day. Yet volatility trading is highly complex and regulators should be concerned that many market participants lack sufficient understanding of the risks they are taking. We recommend that exchanges, market-makers, issuers and potential investors, as well as regulators, read this paper to improve their understanding of these ETNs. We provide a detailed explanation of the roll yield and convexity effects that drive the returns on VIX futures ETNs, and we track their volatility and assess their performance over an eight-year period starting in March 2004, by replicating their values using daily close VIX futures prices. We explain how ETN issuers can construct almost perfect hedges of their suite of ETNs and control their issue (most ETNs are callable) to make very significant profits under all bootstrapped scenarios. However, market knowledge has precipitated front-running of the issuer’s hedging activities, making profits more difficult to control. Moreover, for hedging the ETNs such large positions must be taken on VIX futures that the ETN market now leads the VIX futures that they are supposed to track. The result has been an evident increase in the volatility of VIX futures since 2009. If this increase in statistical volatility induces an increase in VIX futures implied volatility, a knock-on effect would be higher prices of VIX options whilst S&P options are unaffected. A previous discussion paper, Alexander and Korovilas (2012), provided incontrovertible evi- dence that single positions on direct VIX futures ETNs of any maturity – including mid-term and longer-term trackers – could only provide a diversification/hedge of equity exposure during the first few months of a great crisis of similar magnitude to the banking collapse in late 2008. By contrast, the present discussion paper shows that some highly attractive long-term investment vehicles can be simply constructed by holding certain portfolios of VIX futures ETNs. In particular, we intro- duce a new class of ‘roll-yield arbitrage’ ETN portfolios which we call ETN 2 (because they allocate between direct and inverse VIX futures tracker ETNs) and ETN 3 portfolios (that allocate between static and dynamic ETN 2 ). These portfolios have positive exposure to mid-term direct-tracker ETNs and (typically) negative exposure to short-term direct-tracker ETNs (equivalently, positive exposure to short-term inverse-tracker ETNs). Their unique risk and return characteristics make them highly attractive long-term investments, as well as superb diversifiers of stocks, bonds and commodities. Email: [email protected] and [email protected] ICMA Centre, University of Reading, Reading, RG6 6BA, UK Tel: +44 (0)118 378 6431

description

paper about vix trading stratigies

Transcript of Understanding ETNs on VIX Futures

  • Electronic copy available at: http://ssrn.com/abstract=2043061

    Understanding ETNs on VIX Futures

    Carol Alexander and Dimitris Korovilas

    ICMA Centre, Henley Business School at Reading

    This Version: May 19, 2012

    ABSTRACT

    This paper aims to improve transparency in the market for direct, leveraged and inverse exchange-traded notes (ETNs) on VIX futures. The first VIX futures ETNs were issued in 2009. Nowthere are about 30 of them, with a market cap of about $3 billion and trading volume on some ofthese products can reach $5 billion per day. Yet volatility trading is highly complex and regulatorsshould be concerned that many market participants lack sufficient understanding of the risks theyare taking. We recommend that exchanges, market-makers, issuers and potential investors, as wellas regulators, read this paper to improve their understanding of these ETNs.

    We provide a detailed explanation of the roll yield and convexity effects that drive the returnson VIX futures ETNs, and we track their volatility and assess their performance over an eight-yearperiod starting in March 2004, by replicating their values using daily close VIX futures prices. Weexplain how ETN issuers can construct almost perfect hedges of their suite of ETNs and control theirissue (most ETNs are callable) to make very significant profits under all bootstrapped scenarios.However, market knowledge has precipitated front-running of the issuers hedging activities, makingprofits more difficult to control. Moreover, for hedging the ETNs such large positions must be takenon VIX futures that the ETN market now leads the VIX futures that they are supposed to track.The result has been an evident increase in the volatility of VIX futures since 2009. If this increasein statistical volatility induces an increase in VIX futures implied volatility, a knock-on effect wouldbe higher prices of VIX options whilst S&P options are unaffected.

    A previous discussion paper, Alexander and Korovilas (2012), provided incontrovertible evi-dence that single positions on direct VIX futures ETNs of any maturity including mid-term andlonger-term trackers could only provide a diversification/hedge of equity exposure during the firstfew months of a great crisis of similar magnitude to the banking collapse in late 2008. By contrast,the present discussion paper shows that some highly attractive long-term investment vehicles canbe simply constructed by holding certain portfolios of VIX futures ETNs. In particular, we intro-duce a new class of roll-yield arbitrage ETN portfolios which we call ETN2 (because they allocatebetween direct and inverse VIX futures tracker ETNs) and ETN3 portfolios (that allocate betweenstatic and dynamic ETN2). These portfolios have positive exposure to mid-term direct-trackerETNs and (typically) negative exposure to short-term direct-tracker ETNs (equivalently, positiveexposure to short-term inverse-tracker ETNs). Their unique risk and return characteristics makethem highly attractive long-term investments, as well as superb diversifiers of stocks, bonds andcommodities.

    Email: [email protected] and [email protected]

    ICMA Centre, University of Reading, Reading, RG6 6BA, UK

    Tel: +44 (0)118 378 6431

  • Electronic copy available at: http://ssrn.com/abstract=2043061

    Contents

    1 Introduction 1

    2 Constant-Maturity VIX Futures 3

    2.1 Constant-Maturity Prices . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 32.2 Investable Returns and the S&P Indices . . . . . . . . . . . . . . . . . . . . . . . . . 52.3 Roll Cost and Convexity Effects . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 7

    3 Statistical Analysis of S&P Indices 9

    3.1 Volatility Analysis . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 93.2 Correlation Analysis . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 123.3 Implications for Roll-Yield Arbitrage Trades . . . . . . . . . . . . . . . . . . . . . . . 13

    4 Taxonomy of VIX Futures ETNs 14

    4.1 The XVIX and XVZ Exchange-Traded Notes . . . . . . . . . . . . . . . . . . . . . . 154.2 Replication Results for Volatility ETN2 . . . . . . . . . . . . . . . . . . . . . . . . . 174.3 Introducing Volatility ETN3 . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 184.4 Diversifying Risk along the VIX Futures Term Structure . . . . . . . . . . . . . . . . 20

    5 Performance of ETNs: The Investors Perspective 21

    5.1 Performance Measures . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 215.2 Empirical Performance of ETNs . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 225.3 The Minimum-Variance ETN . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 235.4 Risk and Return on ETN2 and ETN3 . . . . . . . . . . . . . . . . . . . . . . . . . . 255.5 Comparison with Standard Asset Classes . . . . . . . . . . . . . . . . . . . . . . . . 26

    6 Hedging ETNs: Concerns for Issuers and Regulators 28

    6.1 Perfect Hedges Based on Indicative Values . . . . . . . . . . . . . . . . . . . . . . . . 286.2 Empirical Examples . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 296.3 Scenario Analysis . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 306.4 The Regulators Perspective . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . . 33

    7 Summary and Conclusions 34

    References 38

    Appendix 38

  • 1. Introduction

    Futures contracts on the Standard and Poors (S&P) 500 volatility index (VIX) began trading

    on the CBOE1 futures exchange in March 2004. Because the VIX index is not tradable there is

    no unique closed-form, arbitrage free, cost-of-carry relationship connecting the VIX index with

    the price of a VIX futures. In fact, there is often a sizeable difference between the index and its

    futures prices.2 Still, the futures price represents the risk-neutral expectation of VIX at maturity,

    and as such VIX futures offer a volatility exposure that is still very highly correlated with the VIX

    index and with the over-the-counter (OTC) S&P 500 variance swaps brokered by investment banks.

    Moreover, unlike variance swaps, the futures have no credit risk. Hence, the investment side of a

    commercial bank no longer needs to rely solely on risky OTC trades to gain exposure to volatility.

    Since 2004, VIX futures have been actively promoted as having diversification benefits and

    other unique characteristics. Sophisticated market players now trade VIX futures for speculation,

    directional exposure, arbitrage, diversification and vega hedging. And now any type of investor

    e.g., a pension funds or an individual has easy access to volatility trades on the New York

    stock exchange (NYSE) through the exchange-traded notes (ETNs) that track constant-maturity

    VIX futures. These products have some adverse features not shared by futures: (i) They retain

    the credit risk of the issuer, which has been relatively high since the banking crisis; (ii) A small

    investor may be trapped into an illiquid investment because the issuer will only redeem the shares

    early in large lots; (iii) Many ETNs have a callable feature whereby the issuer can call back the

    shares at any time, with a short call notice period. On the other hand, ETN issuers charge only a

    small early redemption fee and an annual service fee related to their hedging costs.

    In 2009, Barclays Bank PLC issued VXX and VXZ, their 1-month and 5-month constant-

    maturity VIX futures trackers. Their performance is directly linked to that of the S&P 500 VIX

    Short-Term Futures Index and the S&P 500 VIX Mid-Term Futures Index respectively.3 More

    brokers, notably ETRACS of UBS AG and VelocityShares of Credit Suisse, quickly followed suit

    with other tracker ETNs, 2 leveraged products and inverse exposures to the S&P constant-maturity VIX futures indices. By December 2011 about 30 VIX-linked ETNs were trading in

    very high volumes on secondary markets,4 the primary market being the NYSE Arca. About

    $875 million was traded per day, on average, during the first two months of 2012 (not a particularly

    volatile period) on two of these ETNs; VXX, the Barclays iPath 1-month constant maturity tracker

    and TVIX, its supra-speculative, twice leveraged extension issued by Credit Suisse in November

    2010. The U.S. Securities and Exchange Commission (SEC) are currently scrutinizing the dangers

    of ever-more complex leveraged exchange-traded instruments. 5 After many adverse press reports

    about TVIX, Bloomberg reported that the SEC investigators will review the product.6

    1Chicago Board Options Exchange.2Another (minor) difference is that VIX futures are settled on the special opening quotation price, which is based

    on traded prices of S&P 500 options fed in the VIX formula, whereas the VIX itself is based on the options mid price.3See Standard & Poors (2011b) for details of the methodology underpinning their calculation.4Including four ProShares volatility-based products that trade as exchange-traded funds.5See Reuters, February 23, 2012: Analysis: Out of control? Volatility ETN triggers risk concerns.6See: SEC Said to Review Credit Suisse VIX Note. Bloomberg, March 29, 2012.

    1

  • Issuers of ETNs, the exchanges that list volatility products, and S&P (which calculates the

    indices used for indicative values) are all promoting VIX futures and their ETNs as products

    that are suitable for investors seeking diversification, such as pension funds and mutual funds.

    However, the frenetic ETN market activity has spilled over to the VIX futures market, increasing

    the volatility of VIX futures so that they have now become some of the most risky of all exchange-

    traded instruments.7 Besides, Alexander and Korovilas (2012) provide a detailed and thorough

    demonstration that individual position in VIX futures, or their ETNs, offer no opportunities for

    diversification of equity exposure, except during the onset of a major crisis. In short, they should

    be entered only as speculative trades.

    On the other hand, one of the most important conclusions of this paper is that certain portfolios

    of VIX futures, or their ETNs, which typically take a short position on short-term VIX futures

    and a long position on longer-term VIX futures, can offer unique risk and return characteristics

    that should be attractive to many long-term investors, as well as providing superb opportunities

    for diversification of stocks, bonds and/or commodities. These portfolios might be referred to as

    a new class of roll-yield arbitrage ETN portfolios, although they are not riskless. The idea is to

    trade on the differential roll costs at different points along the VIX futures term structure. We call

    these portfolios ETN2 when they allocate between direct and inverse VIX futures tracker ETNs,

    and ETN3 portfolios when they allocate between static and dynamic ETN2.

    We explain the mechanics under-pinning the design of two recently-launched volatility ETNs

    the XVIX, issued by UBS AG in November 2010, and the XVZ, issued by Barclays Bank PLC in

    August 2011 that fall into the category of ETN2. Different ETN2 products can have quite diverse

    risk and return characteristics. For instance, by replicating the indicative values of the XVIX and

    VXZ daily, from inception of VIX futures in March 2004 until December 2011, we show that: (i)

    the XVIX has almost zero correlation with the VIX, a relatively low volatility and it performs best

    during tranquil, trending market conditions; and (ii) the XVZ has a strong positive correlation

    with VIX, a relatively high volatility, and is highly profitable only during volatile periods.

    This finding motivates a new class of ETN3 portfolios that allocate between ETN2s.8 These

    ETN3 have superior performance and greater diversification potential than the corresponding static

    and dynamic ETN2s, according to a wide variety of performance criteria. We label these static and

    dynamic ETN3 portfolios CVIX and CVZ, respectively.

    ETN issuers can hedge their exposure to early redemption of ETNs perfectly, provided they can

    trade VIX futures at the daily closing price, because it is this price that determines the redemption

    value for a VIX futures ETN. Given the service fee charged we explain how issuers should guarantee

    significant profits, net of hedging costs, provided they issue a controlled portfolio of ETNs. However,

    there has recently been large-scale front-running activity on the very high volumes that must be

    traded near the market close on prompt and second to mature VIX futures for the purpose of

    7For instance, during the onset of the Eurozone debt crisis in August 2011 the statistical (GARCH) volatility ofthe prompt VIX futures contract exceeded 200%, at a time when the average value traded on this contract aloneexceeded one billion USD per day.

    8Like all other volatility ETN innovations, ETN3 can be replicated by trading a term structure of VIX futures.

    2

  • hedging the two largest ETNs, VXX and TVIX. As a result, Credit Suisse stopped the issue of

    TVIX (sending its traded price to a 90% premium over indicative value at one point, such is the

    speculative demand on this product) and re-opened it only on the condition that the hedging risk

    be passed on to the market makers, i.e. they guarantee VIX futures closing prices to Credit-Suisse.

    The outline of this discussion paper is as follows: Section 2 begins with explaining the fundamen-

    tal building-blocks for constructing volatility ETNs, viz. indices of investable, constant-maturity

    VIX futures which are computed by the S&P. These indices determine the indicative value of VIX

    futures ETNs. Section 3 analyses the statistical features of constant-maturity VIX futures tracker

    products, and their implications for new volatility ETNs that are based on trading differential roll-

    yield effects along the term structure. Section 4 describes how the ETN2 and ETN3 products that

    we consider could be replicated using the term structure of VIX futures, and then examines their

    performance using a variety of criteria over the eight-year sample period. In Section 5 we explore

    the risk and return characteristics of one static and one dynamic ETN3, comparing their perfor-

    mance with the ETNs already available, and demonstrating their great potential for diversification

    of exposures to other traditional asset classes: equities, commodities and bonds. Section 6 explains

    how the issuers of ETNs can structure their products and the size of their issue so that they can

    hedge their liabilities almost perfectly, and moreover make significant profits, provided the hedge

    on VIX futures is traded at the closing price on the CBOE. Section 7 concludes.

    2. Constant-Maturity VIX Futures

    For the period March 26, 2004 to December 31, 2011 we obtained Bloomberg data on the daily

    close (last traded price or index value) for: (i) all VIX futures contracts; (ii) VIX and VXV, i.e. the

    30-day and 93-day implied volatility indices calculated by CBOE; (iii) the S&P constant-maturity

    VIX futures indices; (iv) the two most well-established volatility ETNs, i.e. the VXX and VXZ,

    Barclays 1-month and 5-month constant-maturity VIX futures trackers; (v) XVIX and XVZ, the

    two recently-launched ETN2.9

    2.1. Constant-Maturity Prices

    From the VIX futures prices we construct two sets of six synthetic time series, each set repre-

    senting constant maturities of m = 30, 60, . . . , 180 days. The first set is a non-investable futures

    price time series and the second is a futures return time series, which is investable. The constant-

    maturity futures price on day t is derived as:10

    pmt = tpst + (1 t)plt, t =

    l ml s (1)

    9(i) are only available from the inception of VIX futures on March 26, 2004; (iii) start only in December 2005 andprior to this we construct the indices by applying the S&P methodology to traded VIX futures; (iv) are availableonly since their launch in January 2009, but we replicate their indicative values using actual and reconstructed S&Pindices; (v) have very few traded prices, starting only in November 2010 and August 2011 respectively, but again wereplicate their indicative values as for (iv).

    10Note that in Eq. (1) and also in Eq. (2) below, we exclude observations with maturity less than five businessdays. This is to avoid irregularities caused by near-to-maturity trading, as well as the special settlement process inthe VIX futures market.

    3

  • where pm is the synthetic futures price for a specific maturity m, ps and pl are the prices of the

    shorter and longer maturity exchange-traded futures contracts that straddle the maturity m, with

    s < m < l, and each maturity is measured in calendar days to expiry. These price series provide a

    visualization of the futures term structure and its properties, based on market traded prices but,

    returns based on these synthetic prices are not realizable.

    Jan05 Jan06 Jan07 Jan08 Jan09 Jan10 Jan11 Jan120

    10

    20

    30

    40

    50

    60

    70

    80

    90

    Volat

    ility (%

    )

    VIX 30day 60day 90day 120day 150day 180day

    Fig. 1 Term structure evolution of the six constant-maturity VIX futures series, and the VIX 30-day impliedvolatility index. March 2004 December 2011.

    Fig. 1 depicts the VIX futures price series for the six different maturities under consideration,

    and the VIX 30-day implied volatility index that underlies the futures. Since the financial crisis

    starting in mid 2007 volatility has never returned to its previous levels. In September 2008, pre-

    cipitated by the Lehman Brothers collapse, VIX futures were trading at around 50%. Since then

    volatility was especially high during the Greek crisis of May 2010 and the wider Eurozone debt

    crisis beginning in August 2011.

    The term structure of VIX futures is typically in contango. Brief periods of backwardation

    only accompany excessively volatile periods. For our later analysis (in section 4.3) it is interesting

    to note that, over the entire sample, the 30-day futures price was greater than (less than) the

    150-day futures price about 24% (76%) of the time. In some periods, particularly from Q2-2007

    to Q2-2008, the long-term contracts at 150 or 180 days to expiry are trading at very similar levels

    to the short-term contracts at 30 or 60 days to expiry, which implies that the market believes the

    VIX is at its long-term level.

    When the term structure is in backwardation its slope is typically inconsistent with the time-

    series properties of VIX. For instance, on January 2, 2009 the (synthetic) 180-day futures closed

    at 36%; but this overestimated the implied value of VIX on July 2, indeed on that date the VIX

    was below 30%. In other words, the VIX mean-reverts more quickly than the term-structure of

    4

  • VIX futures would imply. Even if the slope is underestimated during periods of backwardation, the

    slope of the term structure is still very steep. It has been particularly pronounced since the onset

    of the banking crisis in 2008. This feature makes VIX futures particularly suitable for the type of

    differential roll-yield trades that we shall propose in this paper.

    30 60 90 120 150 18010

    20

    30

    40

    50

    60

    70

    VIX Fu

    tures

    Prices

    Days to maturity

    06/03/201213/03/201213/11/200820/11/200828/11/2008

    Fig. 2 Term structure of VIX futures while in contango (2010) and backwardation (2008).

    Fig. 2 depicts how the typical shift and slope of the VIX futures term structure varies, according

    to whether the market is in contango or backwardation. In November 2010 the term structure

    exhibited contango, being steeper at the short-end than at the longer maturities. Also, the shifts

    in the term-structure are relatively small each curve is depicted at weekly intervals. By contrast,

    during November 2008 the market was in distinct backwardation. At such times the (now negative)

    slope of the term structure is very much steeper at the short-end, and the shifts are of greater

    magnitude. For instance, the term structure shifted upward by 17 volatility points at the short-end

    during a single week, and then returned almost to the previous level by the end of the next week.

    2.2. Investable Returns and the S&P Indices

    The indicative values of VIX futures ETNs are based on the S&P indices of investable constant-

    maturity (ICM) VIX futures derived from their daily closing prices. As explained by Galai (1979),

    an ICM discretely compounded return on VIX futures may be obtained via linear interpolation

    between the returns on the two futures with maturity dates either side of the constant maturity.

    To construct such a series we set

    rmt+1 = trst + (1 t)rlt+1, t = tpst/pmt , rit+1 =

    pit+1 pitpit

    , (2)

    5

  • where rit+1 are the individual discretely-compounded returns on the tradable futures contracts with

    maturities i = s (short) and i = l (long).11 Basing an ETN on the ICM returns given by Eq. (2)

    retains the one-to-one correspondence between the weights derived for the ETN and the weights

    on the futures that are actually traded. In other words, the ETN issuer may replicate the product

    using the exchange-listed VIX futures, because at any point in time there is a unique interpolation

    constant t for each ICM futures return, which is used via Eq. (2) to distribute into weights on

    traded VIX futures.12

    Jan05 Jan06 Jan07 Jan08 Jan09 Jan10 Jan11 Jan12$0

    $20

    $40

    $60

    $80

    $100

    $120

    $140

    Portf

    olio V

    alue

    30day 60day 90day 120day 150day 180day

    Fig. 3 Evolution of the value of $100 invested in the VIX futures with constant-maturity returns, constructed usingEq. (2), in March 2004. These represent the S&P indices of maturity T , with T = 30, 60, . . . , 180 days.

    To illustrate the difference between the constant-maturity price series Eq. (1), which are dis-

    played in Fig. 1 and the attainable returns for an investor following the constant-maturity method-

    ology as in Eq. (2), Fig. 3 depicts the performance of a theoretical $100 investment in each of the

    six constant maturities. The series represent the S&P indices of maturity 30, 60, . . . , 180 days.

    To attain the ICM return one must rebalance the portfolio of the two straddling VIX futures

    daily to keep the required constant-maturity exposure. Since the VIX futures term structure is

    almost always in contango, at each rebalancing there is a small but almost always negative roll

    cost created by selling the lower price shorter-term futures and buying the higher price longer-

    term futures. This small daily roll cost creates highly negative long-run returns for the investor

    in a short-term VIX futures tracker ETN. But because of the convexity in the VIX futures term

    structure, replicating a long-maturity ETN performs relatively well, because the difference in roll

    11Whenever there are not two contracts that straddle the desired maturity, linear extrapolation rather than linearinterpolation is performed using the two closest contracts to that maturity. In that case a short position in one ofthe two contracts used in the calculation is necessary.

    12Note that returns on VIX futures, as for any other futures contract, directly represent an excess over the currentrisk-free rate return see Bodie and Rosansky (1980) and Fortenbery and Hauser (1990) for further explanation.

    6

  • costs between the two straddling VIX futures contracts is smaller than it is at the short end of the

    term stucture. That is, the size of the roll yield depends on the slope of the term structure, which

    is steepest at the short end. Hence, the negative roll yield when the term structure is in contango is

    much greater at the short end of the VIX futures term structure. This is the main reason why the

    1-month tracker VXX has performed so much worse than the 5-month tracker VXZ. For instance,

    $100 invested in the VXZ on January 29, 2010 was worth a little over $60 by December 30, 2011,

    but the same invested in VXX was worth less than $9!

    2.3. Roll Cost and Convexity Effects

    The discretely-compounded daily return derived from the price index pmt is not realisable, and

    not equal to rmt . The difference between them is called the roll yield of maturity m and its negative,

    the roll cost, is denoted cmt . The roll cost captures the loss (or gain) from rolling a futures position

    from a shorter maturity contract to one of a longer maturity when the futures market is in contango

    (or backwardation) on day t.

    If we ignore transactions costs so that all prices are mid prices, we can simply define the roll

    cost to be Eq. (2) minus the one-period return based on Eq. (1). On applying a little algebra it

    can be shown that:13

    cmt+1 = rmt+1

    [(pmt+1 pmt )/pmt

    ]=

    pst+1 plt+1pmt

    (t+1 t). (3)

    Typically (i.e. unless a new pair of contracts is rolled into) we have t > t+1. For instance, when

    rebalancing inter-week rather than over a weekend, t t+1 = (l s)1.14 When the market isin contango, plt > p

    st so the roll cost (3) is positive. The roll cost is only negative (i.e. roll yield

    positive) when the term structure is in backwardation. The VIX futures term structure is very often

    in contango, as we have seen from Fig. 1, so a very large and negative roll yield has substantially

    eroded the returns realised on all the standard tracker ETNs products since their launch.

    Convexity of the term structure induces a different sensitivity of ETNs returns during periods of

    contango and backwardation. To see this, note that the short end of the VIX futures term structure

    is much more volatile, i.e. rst is usually of much greater magnitude than rlt. The sensitivity of r

    mt

    to rst and rlt depends on whether term structure is in backwardation or contango. For instance, set

    t = 0.5, so that t = (2pmt )

    1pst and 1t = (2pmt )1plt. In contango, t < 1t and the constant-maturity return rmt+1 given by (2) has a relatively low sensitivity to r

    st+1. But in backwardation,

    where returns typically have much greater magnitude (cf. Fig. 2) we have t > 1 t so rmt+1 hasa higher sensitivity to rst+1. This convexity effect means that, as the market swings from contango

    into steep backwardation at the beginning of a crisis, very rapid gains are made on the synthetic

    short-term VIX futures; but thereafter equally rapid losses are made, as the backwardation declines

    and the term structure returns to contango.

    13The S&P uses another definition but without apparent justification, e.g. Standard & Poors (2011a).14The level of l s depends on the distance between the two contracts used in the constant-maturity calculation,

    which is most often either 28 or 35 days in our sample.

    7

  • Jan07 Jan08 Jan09 Jan10 Jan110

    50000

    100,000

    150,000

    200,000

    250,000

    300,000In

    dex L

    evel

    1month 5month Inverse 1month 2 x 1month

    Fig. 4 S&P 30-day and 150-day constant maturity indices, the inverse 30-day index and 2 leverage on the 30-dayindex, December 2005 December 2011.

    To witness this convexity effect in action, Fig. 4 displays the S&P 500 constant-maturity indices

    underlying four major ETNs: the VXX. VXZ, XIV and TVIX.15 These indices were first quoted

    in December 2005, starting at a value of 100,000.16 The convexity effect induces a heightened

    sensitivity to the short-term return during a period of strong backwardation such as the banking

    crisis at the end of 2008. Thus, as the market swung from contango to backwardation at the

    beginning of the crisis, the direct tracker indices jumped upward. For instance, during the two

    months following the collapse of Lehman Bros on September 17, 2008 the 30-day index rose by

    more than 200%, the inverse 30-day index fell by 73%, the 2 leveraged 30-day index rose by670%, and the 150-day index rose by 73%. But as the market swung back to contango the indices

    lost the value they gained and the higher the gain the greater and more rapid the subsequent losses.

    The convexity effect is positive for purchasers of direct tracker ETNs, but leads to large negative

    drawdowns for the inverse tracker products. For instance, the XIV, whose indicative value is

    represented by the red line in Fig. 4, lost about 50% of its value during the first few days of the

    Eurozone crisis in August 2011.

    We conclude that the direct, inverse and leveraged tracker ETNs are likely to be amongst the

    most risky of all exchange-traded products. We now move to a statistical analysis of the returns

    on investable constant-maturity VIX futures, which will verify this claim.

    15Daily returns on VXX and VXZ are returns on the S&P 1-month and 5-month constant-maturity total returnindices, respectively, less the investor fee. Credit Suisse issued the 2 leveraged product TVIX (and the XIV inverseETN whose returns are minus the returns on the S&P 30-day index, less a 1.35% annual fee) in November 2010.

    16Prior to this date their evolution is proportional to the series displayed in Fig. 3, which we started at 100. It isinteresting to note that between March 2004 and December 2005 the 30-day S&P index lost over 80% of its value.

    8

  • 3. Statistical Analysis of S&P Indices

    Panel A of Table 1 reports summary statistics on the six ICM VIX futures returns that de-

    termines the value of the S&P indices, computed using Eq. (2) with maturities, 30, 60, . . . , 180

    calendar days.17 As we move to longer maturities the returns represent longer term expectations

    of volatility and are consequently less variable over time. This is consistent with the well-known

    Samuelson effect in all futures markets see Samuelson (1965). However, the decrease in volatility

    as we move along the term structure of VIX futures is much more pronounced than it is in most

    other financial and commodity futures. Another unique and prominent feature is that, due to the

    roll-cost effects explained in the previous section, there are much larger negative returns at the

    short end of the term structure than at the long end. Panel B presents the correlation matrix of

    these returns over the entire sample. Clearly the series form a very highly correlated system, with

    correlations ranging between 0.86 and 0.98.

    Table 1

    Descriptive statistics for returns on investable, constant-maturity VIX futures.

    Panel A: Summary statisticsContract Annualized Mean Volatility Sharpe Ratio Skewness Kurtosis Total Return

    30-day -33.57% 57.20% -0.5869 1.16 5.38 -97.94%60-day -16.92% 43.35% -0.3902 0.88 4.46 -87.12%90-day -4.79% 36.73% -0.1305 0.77 4.22 -59.24%120-day -2.15% 32.84% -0.0655 0.72 4.40 -44.37%150-day -0.36% 30.29% -0.0119 0.67 4.52 -31.90%180-day 0.62% 28.69% 0.0215 0.68 4.75 -23.76%

    Panel B: Correlations30-day 60-day 90-day 120-day 150-day 180-day

    30-day 1.0060-day 0.97 1.0090-day 0.93 0.98 1.00120-day 0.91 0.95 0.98 1.00150-day 0.88 0.92 0.95 0.98 1.00180-day 0.86 0.90 0.93 0.95 0.98 1.00

    Panel A reports the summary statistics for investable, constant-maturity VIX futures daily returns. Sample means,standard deviations and corresponding Sharpe ratios are annualized based on 250 trading days per year. We presentfigures for excess kurtosis not kurtosis here and later, in Tables 6 and 9. Panel B is the correlation matrix for thereturns under consideration. All figures are significant at the 1% level. The sample is between March 26, 2004 andDecember 30, 2011.

    3.1. Volatility Analysis

    We examine the statistical volatility of the indicative values for VIX futures ETNs by applying a

    generalized autoregressive conditional heteroscedasticity (GARCH) framework to daily returns on

    S&P indices of different maturities. To capture the possibility of an asymmetric volatility response

    to shocks we employ the well-known Glosten, Jagannathan, and Runkle (1993) (GJR) model. That

    17The results here omit transaction costs and the investment fee for VIX futures ETNs (these are analysed later,in Sections 6 and 5).

    9

  • is, the return rt is assumed to follow the conditional mean and variance equations:

    rt = c+ tzt, zt NID(0, 1), (4)2t = +

    2t1 + 1{t1

  • Table 3

    Maximum likelihood estimation of GJR models on constant-maturity VIX futures returns.

    30-day 60-day 90-day 120-day 150-day 180-day

    Panel A: March 26, 2004 - December 31, 2010 2.94 105 1.58 105 6.47 106 4.12 106 3.24 106 3.61 106

    (8.09) (6.52) (6.57) (4.81) (5.65) (7.02)

    0.1878 0.1459 0.1360 0.1463 0.1377 0.1343(11.16) (9.49) (9.46) (9.80) (10.51) (10.60)

    0.8602 0.8854 0.8932 0.8842 0.8896 0.8877(68.39) (82.82) (89.57) (84.39) (95.76) (99.78)

    -0.1510 -0.1187 -0.0886 -0.0795 -0.0698 -0.0661(-8.49) (-6.89) (-5.90) (-5.09) (-4.85) (-4.83)

    + 0.5 0.1123 0.0866 0.0917 0.1065 0.1028 0.1013

    51.67% 37.62% 32.66% 33.37% 32.67% 28.62%

    Panel B: January 1, 2011 - March 31, 2012 1.21 104 7.57 105 3.98 105 3.00 105 2.44 105 1.96 105

    (2.25) (3.09) (2.52) (2.27) (2.34) (2.08)

    0.1365 0.2044 0.2144 0.1906 0.1762 0.1653(3.41) (3.61) (3.29) (3.01) (2.73) (2.50)

    0.8393 0.7721 0.7666 0.7768 0.7805 0.7888(17.04) (15.27) (16.55) (16.54) (15.69) (14.84)

    -0.0544 -0.0417 -0.0083 0.0127 0.0370 0.0453(-1.09) (-0.54) (-0.10) (0.15) (0.41) (0.48)

    + 0.5 0.1093 0.1835 0.2102 0.1969 0.1947 0.1880

    76.70% 65.33% 65.55% 53.51% 49.54% 46.00%

    In-sample maximum likelihood estimation of GJR-GARCH coefficients for each VIX futures series. Numbers inparentheses denote tstatistics under the null hypothesis that coefficients are equal to zero. All coefficients aresignificant at the 1% level. denotes the long term average for volatility, i.e. for the GJR model the annualizedsquared root of 2 = /(1 0.5).

    the long-term volatility of 30-day futures, at 56.27%. Moreover, the long-term volatility does not

    fall much further for the 90-day and longer maturity contracts: all longer-maturity contracts have

    similar . The implication here is that equity investors expect VIX to display a very rapid mean-

    reversion, typically taking more than 1 month but less than 2 months to revert to normal levels

    after a shock. This is also evident from historical volatilities presented in Table 1.

    Fig. 5 depicts the GJR conditional volatility estimates over the entire sample. The conditional

    volatility is much higher and more variable for the 30-day futures compared with other maturities.

    A maximum volatility of more than 200% for the 30-day VIX futures occurred during the onset

    of the Eurozone debt crisis of August 2011. The TVIX was launched one month later, but had it

    existed in August 2011 its volatility would have been over 400%! The volatility of VIX futures also

    peaked at the time of the Lehmann Brothers collapse in September 2008, and many times after

    this. Indeed all VIX futures, even those of longer maturities, have displayed numerous jumps in

    their volatilities along with a generally increasing level of volatility.

    As the trading volume on VIX futures has increased, due to large-scale hedging activity of

    ETNs issuers, they have become more volatile relative to the VIX index itself. For instance,

    between January 2, 2007 and March 31, 2010, a period when the average VIX index value was

    27%, the 30-day VIX futures had an average volatility of 60%. But between April 1, 2010 and

    11

  • Jan05 Jan06 Jan07 Jan08 Jan09 Jan10 Jan11 Jan120

    20%

    40%

    60%

    80%

    100%

    120%

    140%

    160%

    180%

    200%VI

    X Fu

    ture

    s Vola

    tility

    30day 60day 90day 120day 150day 180day

    Fig. 5 GJR-GARCH volatilities for the six VIX futures series based on the maximum likelihood estimation of themodel for conditional variance: 2t = +

    2t1 + 1{t1 0. The mth component is determined by the eigenvector belonging tothe mth largest eigenvalue, so that the proportion of total variation explained by the mth principal

    component is m/(1+ +n). This way we identify how many key factors explain most of the totalrisk in the system. Note that principal components are, by construction, mutually uncorrelated

    because W is an orthogonal matrix.

    Table 4 reports the PCA of the correlation matrix of S&P index returns, estimated over the

    entire sample. Panel A presents the proportion of total variation in the system explained by each

    component. The first component alone explains almost 95% of the movements in the system and

    12

  • Table 4

    Principal components analysis on the correlation matrix of VIX futures constant maturity returns.

    Contract PC1 PC2 PC3 PC4 PC5 PC6

    Panel A: Proportion of variation explained94.73% 3.44% 1.04% 0.49% 0.19% 0.11%

    Panel B: Eigenvectors30-day 0.3980 -0.6185 0.5062 -0.3890 0.2166 0.067460-day 0.4101 -0.3886 -0.1205 0.5116 -0.5848 -0.250090-day 0.4143 -0.0962 -0.5043 0.2797 0.4912 0.4953120-day 0.4138 0.1774 -0.4293 -0.4517 0.1330 -0.6256150-day 0.4105 0.4019 0.0443 -0.3661 -0.5256 0.5077180-day 0.4026 0.5140 0.5373 0.4130 0.2754 -0.1963

    Panel A reports the proportion of total risk explained by each factor driving the term structure of the S&P indexreturns, based on the sample from March 2004 to December 2011. Panel B reports the eigenvectors (i.e. factor weightsfor the principal component representation) for each return series.

    with three factors representing the system we are able to explain over 99% of the total variation.

    Panel B of Table 4 reports the eigenvectors, i.e. the factor weights for each S&P index return series.

    Reading across the first row in panel B and using only three components, we have with over 99%

    accuracy, the following representation of the standardized returns r30t on 30-day S&P index:19

    r30t 0.3980PC1,t 0.6185PC2,t + 0.5062PC3,t. (6)

    Similar three-factor representations for futures of other maturities show that the first component

    captures an almost exact parallel shift in the term structure, in that if PC1 moves by 1% and the

    other components remain fixed, then all standardized futures shift upwards by about 0.4%. The

    first eigenvalue tells us that 94.73% of the movements in standardized VIX futures over the sample

    consist of parallel shifts of this type. The second component represents an almost exact linear

    tilt in the standardized term structure, with shorter maturities increasing whilst longer maturities

    decrease. Only 3.44% of the variation in the standardized VIX futures term structure can be

    attributed to movements of this type.20

    3.3. Implications for Roll-Yield Arbitrage Trades

    The typical movements of the S&P indices may be decomposed into changes arising from: (a)

    the roll cost cmt , representing a slide along the VIX term structure from a maturity of i days to

    maturity of i 1 days,21 for each contract i = s, l straddling the maturity m; and (b) a movementof the entire VIX futures term structure from day t 1 to day t. The roll cost is relatively smalland highly predictable, compared with the large and unpredictable movements of type (b). A

    19The standardized return r30t is the return at time t minus its sample mean divided by its sample standarddeviation.

    20PCA is not merely a statistical tool for gaining further insight to the statistical behaviour of the term structure ofVIX futures. When applied to the VIX futures covariance matrix it becomes a tool for generating GARCH covariancematrices of VIX futures. In the appendix these covariance matrices will be used to examine how effectively the tradersin VIX futures can diversify their risk across the term structure.

    21Or subtract more than 1 day over a weekend, when using business rather than calendar day counts. And heretypical excludes the effect when moving to a new pair of contracts.

    13

  • roll-yield arbitrage seeks trades that are immunized against movements of type (b) so that their

    main exposure is purely to the roll cost.22

    The PCA analysis in the preceding sub-section shows that about 95% of the observed moves

    in standardized returns are parallel shifts of the entire term structure. Hence, long-short trades in

    standardized returns of different maturities should hedge about 95% of the large and unpredictable

    daily movements of the term structure. That is, the amount gained or lost through the movement

    at the short end of the term structure would be almost exactly offset by an equal opposite loss or

    gain at the long end of the term structure.

    A long-short ETN portfolio with positions weighted by the inverse of their respective volatilities

    will capture this offsetting effect. For instance, since the 30-day futures have an average volatility

    approximately twice that of the 150-day futures (cf. Table 1) a short position on 30-day VIX futures

    (long position on XIV) offset by a long position of twice the size on 150-day futures (VXZ, VIIZ

    or VXEE) should immunize against 95% the risk arising from movements of type (b). This type

    of reasoning may well have been used by UBS to derive the XVIX, a roll-yield arbitrage ETN that

    the bank issued in November 2010. The XVIX was the first example of an ETN2, having a static

    allocation to the inverse 30-day VIX futures tracker and twice this allocation to the direct 150-day

    VIX futures tracker.

    4. Taxonomy of VIX Futures ETNs

    Table 5 displays a chronology of VIX futures ETNs issued by Barclays (in red), Credit Suisse

    (in blue) and UBS (in black). The first two columns give the constant maturity of the respective

    indicative S&P index,23 and the maturity of the notes. The third column gives the leverage, i.e. 1

    for a direct tracker, 1 for an inverse tracker, and 2 for a direct leveraged tracker. Then follows: theannual fee, higher for the inverse products because the issuer charges a significant fee for hedging

    costs; the market cap of each note on February 29, 2012 and the average volume traded on each

    note between January 2 and February 29, 2012.

    The market cap on VXX is still almost double that of TVIX. Together their cap is 64% of the

    total cap of all ETNs. Having been issued later, the UBS products have the lowest market cap (5%

    of the total) and the Barclays products constitute 56% of the total market cap. The average daily

    trading volume during the first two months of 2012 was 44.59 million shares over all ETNs, with

    36.81 million shares traded on VXX and TVIX alone (amounting to about $875 million dollars per

    day) and 23.87 million shares traded on average, per day, on just the Barclays products. On August

    8, 2011 a total of $4,973,659,365 was traded on the VXX alone. Clearly, Barclays still dominates

    the market although shares on the TVIX and XIV products of Credit Suisse are being traded in

    increasingly high volumes.

    The remainder of this section explores the potential benefits from roll-yield arbitrage trades

    22We use the term arbitrage here because it has slipped into market usage. But, as mentioned in the introduction,it is not really an arbitrage because it is not riskless.

    23And for the two ETN2, XVIX and XVZ, which attempt to exploit differential roll yields, the maturities of thetwo indices they allocate between.

    14

  • Table 5

    ETN chronology.

    Maturity Service Market Cap. Average

    Ticker* Inception VIX futures (m) Note (y) Leverage fee (million $) Volume

    VXXa,b Jan-2009 1 10 1 0.89% 1,218.36 23,499,211VXZa Jan-2009 5 10 1 0.89% 233.26 329,478VIIXa Nov-2010 1 20 1 0.89% 15.82 32,605VIIZ Nov-2010 5 20 1 0.89% 7.63 829XVIX Nov-2010 1 vs. 5 30 1 0.85% 23.04 7,539XVZ Aug-2011 1 vs. 5 10 1 0.95% 187.33 25,816VXAA Sep-2011 1 30 1 0.85% 5.94 1,210VXBB Sep-2011 2 30 1 0.85% 7.19 370VXCC Sep-2011 3 30 1 0.85% 8.14 660VXDD Sep-2011 4 30 1 0.85% 8.37 192VXEE Sep-2011 5 30 1 0.85% 8.58 371VXFF Sep-2011 6 30 1 0.85% 9.20 182XXV Jul-2010 1 10 -1 0.89% 15.66 13,586XIVb Nov-2010 1 20 -1 1.35% 427.55 7,321,582

    ZIVb Nov-2010 5 20 -1 1.35% 9.09 15,229AAVX Sep-2011 1 30 -1 5.35% 11.79 3,484BBVX Sep-2011 2 30 -1 5.35% 11.43 1,623CCVX Sep-2011 3 30 -1 5.35% 10.82 765DDVX Sep-2011 4 30 -1 5.35% 10.96 132EEVX Sep-2011 5 30 -1 5.35% 10.50 891FFVX Sep-2011 6 30 -1 5.35% 10.59 100IVOP Sep-2011 1 10 -1 0.89% 6.95 4,602VZZB Nov-2010 5 10 2 1.78%c 2.79 12,049TVIX Nov-2010 1 20 2 1.65% 676.04 13,315,361TVIZ Nov-2010 5 20 2 1.65% 7.32 4,464

    We colour ETNs according to their issuer: Barclays Bank PLC (red), Credit Suisse AG (blue) and UBS AG(black). Except VXX, VXZ and XVZ, all other products have automatic termination clauses and all products exceptBarclays are callable at any time by the issuer. For products with leverage other than 1, actual leverage depends on day and time of transaction. All ETNs carry an extra redemption fee: 0.05% (red and blue) and 0.125% (black). Market cap as of February 29, 2012; average daily volume computed between January 2, 2012 and February 29,2012.a Options on these ETNs are available to trade on CBOE.b Split executed by the issuer: 1 for 4 (VXX), 10 for 1 (XIV), 8 for 1 (ZIV).c The 3m LIBOR is added on top of the service fee.

    between inverse short-term and direct long-term VIX futures trackers. We begin by replicating and

    analysing the performance of XVIX and XVZ, two such trading strategies that have recently been

    issued as volatility ETNs. Then we introduce a new class of ETN3 products which trade on the

    different performance of the ETN2 when the VIX futures term structure is in backwardation and

    contango. This is followed by an analysis of more general diversifying trades along the entire term

    structure, based on minimum variance portfolios.

    4.1. The XVIX and XVZ Exchange-Traded Notes

    The ETRACS Daily Long-Short VIX ETN (XVIX) is one of the thirteen VIX-based ETNs

    brokered by UBS AG. It first traded on November 30, 2010 and matures on November 30, 2040.

    15

  • It is a static exposure across the VIX futures term structure capturing 50% of the performance of

    an inverse position in the VXX (the 30-day VIX futures tracker ETN) and 100% the performance

    of a long position in the VXZ (the 150-day VIX futures tracker ETN). This strategy exploits the

    roll yield differences between short-term and long-term contracts which are evident when the VIX

    futures term structure is in contango, i.e. most of the time. Letting rxvixt denote the excess return

    on the static carry strategy at time t we have:

    rxvixt = r30t2

    + r150t (7)

    where r30t and r150t are the excess returns earned on constant-maturity 30-day and 150-day VIX fu-

    tures contracts respectively (i.e. the returns captured by the two respective S&P constant-maturity

    indices as these are already described). Based on our previous comments in Section 3.3, we see that

    this relationship hedges about 95% of the term structure movements so that it earns the differential

    roll yield across the two maturities, which is typically positive because the market is in contango.

    Barclays launched the dynamic VIX ETN (XVZ) in August 2011 and full details of this product

    are given in Barclays Bank PLC (2011). Letting x30 and x150 denote the allocations on day t1 tothe 30-day and 150-day VIX futures contracts, respectively, the excess return on the XVZ strategy

    at time t is given by:

    rxvzt = x30t1r

    30t + x

    150t1r

    150t (8)

    The allocations x30 and x150 are derived relative to target allocations y30 and y150 using the following

    process. Let the ratio of the 30-day implied volatility index (VIX) to the 93-day implied volatility

    index (VXV) at time t be denoted Yt. Thus, when Yt < 1 (Yt 1) the short end of the VIX termstructure is in contango (backwardation). Now define target allocations [y30t , y

    150t ] on 30-day and

    150-day VIX futures as:

    [y30t , y150t ] =

    [0.3, 0.7] if Yt1 < 0.9,[0.2, 0.8] if 0.9 Yt1 < 1,

    [0, 1] if 1 Yt1 < 1.05,[0.25, 0.75] if 1.05 Yt1 < 1.15,[0.5, 0.5] if Yt1 1.15.

    (9)

    The actual allocation applied on the strategy at time t is then:

    x30t =

    x30t1 if x30t1 = y

    30t

    min{x30t1 + 12.5%, y

    30t

    }if x30t1 < y

    30t

    max{x30t1 12.5%, y30t

    }if x30t1 > y

    30t

    (10)

    16

  • and

    x150t =

    x150t1 if x150t1 = y

    150t

    min{x150t1 + 12.5%, y

    150t

    }if x150t1 < y

    150t

    max{x150t1 12.5%, y150t

    }if x150,t1 > y

    150t

    (11)

    The XVZ is a relatively complex dynamic strategy that attempts to allocate between VXX and

    VXZ to gain full advantage of the roll-yield differences along the VIX futures term structure, by

    switching the positions in the short-term and long-term end of the term structure depending on

    whether the VIX term structure is in contango or backwardation.

    4.2. Replication Results for Volatility ETN2

    We replicate the values of the XVIX and XVZ back to March 2004 using all available data on

    VIX futures and S&Ps constant-maturity indices.24 Note that XVIX and XVZ are total return

    products, i.e. the 91-day U.S. T-bill is added to their underlying index return. However, here we

    present the excess returns on the products since, assuming they can borrow money at close to the

    T-bill rate, it is excess returns that are of interest to large investors. We also deduct the annual

    service fee (which is 0.85% and 0.95% per annum, for XVIX and XVZ respectively) so that the

    results correspond to the actual excess return received by the investor. We also present results for

    the two underlying ETNs, VXX and VXZ, after accounting for their service fee of 0.89% p.a..

    Table 6

    Descriptive statistics of ETNs and volatility roll-yield trades, and correlation matrix with VIX and VXV.

    Panel A: Summary statisticsContract Annualized Mean Volatility Sharpe Ratio Skewness Kurtosis Total ReturnVXX -35.68% 56.38% -0.6328 1.08 5.03 -98.19%VXZ -1.50% 30.06% -0.0498 0.71 4.57 -37.36%XVIX 15.94% 13.42% 1.1875 -0.33 5.02 224.22%XVZ 17.75% 24.00% 0.7394 1.56 17.55 220.93%

    Panel B: CorrelationsVXX VXZ XVIX XVZ VIX VXV

    VXX 1.00VXZ 0.90 1.00XVIX -0.09 0.36 1.00XVZ 0.71 0.85 0.42 1.00VIX 0.87 0.79 -0.05 0.62 1.00VXV 0.89 0.82 -0.02 0.67 0.94 1.00

    Panel A reports the summary statistics for the two volatility roll-yield trades under consideration (ETN2). Samplemeans, standard deviations and corresponding Sharpe ratios are annualized based on 250 trading days per year.Panel B is the correlation matrix for the ETN2 returns and the implied volatility indices, VIX and VXV. The sampleis between March 26, 2004 and December 30, 2011.

    Table 6 presents some descriptive statistics based on our replicated sample. Compared with

    24Since the S&P started quoting constant-maturity indices only in December 2005, the first 21 months of data arecomputed using our own computation of the constant-maturity futures returns based on Eq. (2). Note that betweenDecember 2005 and December 2011, the 30-day and 150-day returns based on Eq. (2) had correlation of 99.82% and99.32% with the Short Term and Mid Term S&P VIX futures indices respectively - not an exact 1 because of minordifferences of very few basis points arising from the difference in calendar/business days interpolation.

    17

  • the tracker ETNs, the XVIX and XVZ are much less volatile. Moreover, they successfully turn the

    negative volatility risk premium and negative roll-yield effect into positive returns. The simple,

    static XVIX outperformed the more complex, dynamic XVZ on a risk-adjusted basis (as measured

    by the Sharpe ratio) and although its average annual mean return was lower, its total return

    was slightly greater than that of the XVZ. The higher volatility, large positive skew and very high

    kurtosis of the XVZ returns shows that its performance is characterised by a few very large positive

    returns. Timing an investment in XVZ would therefore be crucial, assuming one could always find a

    buyer in the secondary market when wishing to ooad the investment. The simpler static strategy

    seems a better bet for a longer-term investment, being much less exposed to extreme daily shocks.

    Nevertheless, even the XVIX has a higher kurtosis than the tracker ETNs, so potential investors

    should be aware that both products are exposed to significant daily fluctuations.

    Panel B of Table 6 shows the correlation matrix of daily returns on the ETN2 with the daily

    returns on the VIX and the VXV. The XVZ has a significant positive correlation with both the

    VIX and the VXV (not surprizingly, since they are used as indicators for changing allocations)

    but the static XVIX strategy has virtually zero correlation with the VIX and the VXV, indeed

    the correlations are even slightly negative. This shows that the XVIX could be regarded as an

    investment instrument which lies outside the equity volatility asset class.

    4.3. Introducing Volatility ETN3

    The XVIX and XVZ indicative returns between March 2004 and December 2011 are depicted

    in the middle section of Fig. 6 below, along with some summary statistics. Later on, a more

    detailed analysis will show that the XVIX and XVZ have a complementary performance. That is,

    the XVIX performs best when the market is in contango and the XVZ only performs well during

    market crashes, i.e. when the VIX futures term structure swings into steep backwardation, at

    which time it performs very well indeed, exactly when the XVIX makes a significant loss. Hence,

    we ask: it is possible to enhance returns further by holding a combination of the XVIX and XVZ?

    To illustrate the possible benefits of such an ETN based on ETN2 (called an ETN3, for obvious

    reasons) we now consider one static and one dynamic allocation to the two already-issued ETN2:

    The static ETN3, CVIX, allocates 75% of capital to XVIX and 25% to XVZ. This allocation

    is chosen because it corresponds almost exactly to the proportion of days in our sample that

    the relationship between the 30-day contract and 150-day contract was in contango (75%)

    and backwardation (25%), as previously noted;

    The dynamic ETN3, CVZ, holds XVIX when the VIX term structure is in contango (i.e.

    Yt < 1) and XVZ when VIX term structure is in backwardation (Yt 1).

    Any prospective issuer of these ETN3s need not replicate the product by actually holding shares

    of the XVIX and XVZ indeed, the ETN redemption constraints would preclude this. Instead,

    direct trading along the term structure of VIX futures, with daily rebalancing to create synthetic

    ICM futures as described in Section 2, allows their performance to be replicated exactly. Since

    18

  • replication is so easy there are numerous other rules for allocating between the two ETN2 that

    might be considered. Indeed, we expect major volatility ETN issuers to be actively developing

    such products at the time of writing. The allocations specified above were merely the simplest

    possible static and dynamic rules based on the observation that the XVIX tends to performs best

    when the VIX term structure is in contango, and the VXZ performs better when the VIX term

    structure is in backwardation.

    Fig. 6 shows the daily returns to the VXX and VXZ (above), the XVIX and XVZ (middle)

    and CVIX and CVZ (below) plus some descriptive statistics: the annualized mean daily return,

    the volatility, Sharpe ratio and total return computed over the entire sample period, net of fees.

    Clearly, the two VIX futures trackers VXX and VXZ are high-risk, low-return ETNs. They are

    clearly undesirable as stand-alone investments and should only be used for short-term speculation.

    By contrast, the differential roll-yield trades, XVIX and XVZ, have a much better risk-adjusted

    performance: the XVIX has a lower risk than the XVZ, and a higher total return over the period.

    However, its average daily return is lower, at only 15.94% in annual terms compared with 17.75%

    for the XVZ.

    Jan05Jan06Jan07Jan08Jan09Jan10Jan11Jan120.2

    0

    0.2

    Mean = 43.37%, Vol = 56.69%, SR = 0.77, TR = 99.16%

    VX

    X r

    etu

    rns

    Jan05Jan06Jan07Jan08Jan09Jan10Jan11Jan120.2

    0

    0.2

    Mean = 4.83%, Vol = 30.01%, SR = 0.16, TR = 52.80%

    VX

    Z r

    etu

    rns

    Jan05Jan06Jan07Jan08Jan09Jan10Jan11Jan120.2

    0

    0.2

    Mean = 16.45%, Vol = 13.55%, SR = 1.21, TR = 250.28%

    XV

    IX r

    etu

    rns

    Jan05Jan06Jan07Jan08Jan09Jan10Jan11Jan120.2

    0

    0.2

    Mean = 17.45%, Vol = 23.70%, SR = 0.74, TR = 227.08%

    XV

    Z r

    etu

    rns

    Jan05Jan06Jan07Jan08Jan09Jan10Jan11Jan120.2

    0.1

    0

    0.1

    0.2

    Mean = 16.63%, Vol = 13.77%, SR = 1.21, TR = 254.48%

    CV

    IX r

    etur

    ns

    Jan05Jan06Jan07Jan08Jan09Jan10Jan11Jan120.2

    0

    0.2

    Mean = 30.85%, Vol = 23.31%, SR = 1.32, TR = 870.57%

    CV

    Z re

    turn

    s

    Fig. 6 Daily returns on volatility ETNs (VXX, VXZ, XVIX, XVZ, CVIX and CVZ), annualized mean daily return,volatility, Sharpe ratio and total return between March 26, 2004 and December 30, 2011.

    19

  • The proposed ETN3 products, the CVIX and CVZ, are highly correlated with the two ETN2s:

    the static products (XVIX and CVIX) have a sample correlation of 91.78% and the dynamic

    products (XVZ and CVZ) have a sample correlation of 91.68%. The CVIX has a performance very

    similar to the XVIX but the CVZ performs very much better than the XVZ. In fact, since 2004

    CVZ has had an average daily return of over 30% (annualized), with a Sharpe ratio of 1.31 and a

    total return of almost 800%.

    4.4. Diversifying Risk along the VIX Futures Term Structure

    Although the main objective when structuring an ETN product is to maximize return, there is

    also a diversification benefit arising from any long-short position on VIX futures of two different

    maturities, since their returns are highly correlated. This diversification effect could be further

    enhanced by trading more than two different constant-maturity tracker ETNs. In this section

    we consider how an ETN2 product might be structured by replicating a portfolio containing VIX

    futures of all available maturities. Such portfolios should also be of internal interest to the issuing

    bank. This is because the investment arm of a large commercial bank could be actively participating

    in the VIX futures market in several ways other than issuing ETNs: (1) it may act as a market

    maker or a broker executing clients orders;25 (2) other departments may use VIX futures to hedge

    their volatility exposure; and (3) a separate proprietary trading desk might speculate in the market.

    Since the bank may be actively engaged in all these operations simultaneously, open positions in

    the VIX futures book of the bank overnight may be unavoidable. Thus, the risk management

    department of the bank as a whole and its Chief Risk Officer in particular should be interested in

    minimizing the risk exposure by effectively diversifying its positions along the VIX term structure.

    Suppose that the bank has trades along the whole VIX futures term structure and is net long,

    with weights vector wt = (w1t, w2t, . . . , wnt) where w1t + w2t + + wnt = 1. Denote by t theestimate of the n n covariance matrix of the returns on the contracts at time t. Then the globalminimum-variance portfolio, i.e. the exposure along the term structure that will give the lowest

    variance at time t, is given by the weights vector:

    wt =1t 1

    11t 1(12)

    where 1 is the n 1 vector of 1s. The minimum variance attainable is

    2t = wt tw

    t . (13)

    Many banks would seek to be net long on VIX futures, not only to hedge the short volatility

    exposure of writing options and variance swaps but also to accommodate the long volatility positions

    of institutional clients that seek to diversify their equity exposures. However, a minimum-variance

    portfolio of VIX futures can also be net short, with weights wt .25A list of authorised market makers and brokerage firms in VIX futures market can be found in http://cfe.

    cboe.com/tradecfe/brokers.aspx.

    20

  • We shall include the ETN derived from out-of-sample minimum variance allocations in our

    empirical results below, and label this potential ETN2 product the MVX, for obvious reasons. For

    this the estimate t of the covariance matrix in (13) is computed daily, using a simple rolling

    equally-weighted historical covariance matrix calculated from the last N returns.26

    5. Performance of ETNs: The Investors Perspective

    This section reports detailed results on the comparative performance of VIX futures ETNs,

    based on their indicative values between March 2004 and December 2011. First we give a brief

    description of the performance criteria that we apply.

    5.1. Performance Measures

    The most widely used risk-adjusted performance measure, introduced by Sharpe (1966, 1975),

    is the ratio of the expected excess annual return on a portfolio to its standard deviation. We follow

    standard practice by estimating the Sharpe ratio as the mean of daily excess returns divided by its

    standard deviation, annualizing this ratio through multiplying by250. The Sharpe ratio adjusts

    for risk as measured by the portfolio volatility whereas the similar performance measure introduced

    by Sortino and Van Der Meer (1991) adjusts only for downside risk, as measured by the square root

    of semi-variance introduced by Markowitz (1959). In addition to the Sharpe and Sortino ratios,

    we examine the Omega ratio introduced by Keating and Shadwick (2002), which is the ratio of

    the expectation of the positive excess returns to the expectation of the negative excess returns.

    A positive Omega ratio indicates that positive returns tend to outweigh the negative returns, on

    average. As another measure of downside risk which quantifies the extent of possible margin calls

    on the issuer of the ETN, we calculate the maximum daily drawdown over the entire sample from

    March 2004 to September 2011.

    Finally we compute the manipulation-proof performance measure Theta derived by Goetzmann,

    Ingersoll, Spiegel, and Welch (2007). Manipulation of a performance measure is due to the fund

    managers actions, like window dressing or closet indexing, which increase the value of a performance

    measure, but add no real value to the investor. The properties of such a manipulation-proof

    performance measure are similar to a power utility pay-off. In particular, the measure depends on

    the relative risk aversion of the investor, . We set = 3, but our empirical results are qualitatively

    robust to the choice of this parameter. For a portfolio with daily excess returns rt measured over

    a sample size of size T it is defined as

    =250

    (1 ) ln(T1

    Tt=1

    (1 + rt)1

    ). (14)

    Similar to Ederington (1979) the effectiveness of the diversification is measured by the per-

    26But the disadvantages of this approach are well known - see Alexander (2009) for example. Baba, Engle, Kraft,and Kroner (1991) and many others advocate instead the multivariate GARCH model, where a conditional covariancematrix is estimated at every time t using maximum likelihood methods. The results of using a GARCH covariancematrix are given in the appendix.

    21

  • centage reduction in variance when the minimum-variance portfolio is held, relative to holding the

    undiversified benchmark position over a period of one day. That is,

    Et =2,t 2pi,t

    2,t, where (15)

    2,t = (1 )i=1

    i1(rti

    )2, and 2pi,t = (1 )

    i=1

    i1(rpiti

    )2, (16)

    where rt and rpit are the daily returns on the benchmark portfolio, and on the minimum-variance

    portfolio, respectively. Here 0 1, with higher values resulting in smoother time series for2,t and

    2pi,t. When = 1 we have the standard equally-weighted sample variances, but we prefer

    to use < 1 for exponentially smoothed sample variances as these change over time according to

    market conditions.

    5.2. Empirical Performance of ETNs

    Table 7 reports the range of performance measures described above, applied to the already-

    issued ETNs in question (i.e. the VXX, VXZ, XVIX, and XVZ) over the entire sample period and

    over three sub-periods: March 26, 2004 October 31, 2006 (a period of stable trending equity

    markets); November 1, 2006 May 31, 2009 (which covers the credit and banking crises); and June

    1, 2009 December 30, 2011 (a period that includes the Eurozone debt crisis). In each period we

    compare their performance to the performance of the ETN3 products defined above, i.e. the CVIX

    and CVZ. Panel A results for the tracker ETNs show that long-term investments in these products

    are unwise. Although the VXZ performs better than the VXX, the VXZ could still incur a daily

    loss of around 10%, and the expected return is negative. The only sub-period when the trackerETNs performed reasonably well was the central period covering the credit and banking crises, and

    over this period the long-term VIX futures tracker VXZ outperformed the short-term tracker VXX

    according to each criterion.

    Turning now to the ETN2s: both XVIX and XVZ outperform the tracker ETNs over the entire

    period, and over the first and last sub-samples in Panel B and Panel D (when the XVIX also

    outperforms the XVZ). This is according to each criterion, except for the large maximum daily loss

    observed for the XVZ. During the credit and banking crisis period (Panel C) their performance was

    comparable to that of the tracker ETNs, with the XVZ clearly a better investment than the XVIX.

    Still, the large daily drawdowns highlight that the VIX futures market can swing very quickly from

    contango into strong backwardation, with inverse contracts rapidly appreciating in value, especially

    the short-term ones. In this case the potential profits from differential roll-yield strategies can easily

    turn into large losses.

    The performance of the ETNs and ETN2s is clearly regime-dependant, and the aim of our

    proposed ETN3s is to build portfolios that will perform relatively well irrespective of the market

    regime or at least be more immune to the regime than the already-issued ETNs. Examining the

    performance of the ETN3s over the whole period, both the static mix of XVIX and XVZ (i.e. the

    22

  • Table 7

    Performance measures for ETNn, n = 1, 2, 3.

    ETN ETN2 ETN3

    VXX VXZ XVIX XVZ CVIX CVZ

    Panel A: Full SampleSharpe ratio -0.6328 -0.0498 1.1875 0.7394 1.1896 1.3111Sortino ratio -0.9789 -0.0761 1.7322 1.2106 1.7893 2.1649Omega ratio 0.8924 0.9909 1.2315 1.1858 1.2430 1.3424Maximum daily loss -16.35% -9.16% -7.09% -10.96% -6.25% -10.96%Theta -81.69% -14.85% 13.22% 9.33% 13.50% 22.71%

    Panel B: March 26, 2004 - October 31, 2006Sharpe ratio -2.6751 -1.5779 1.2081 -0.3174 0.8276 0.7343Sortino ratio -3.3698 -2.0236 1.7334 -0.4047 1.1418 0.9635Omega ratio 0.6249 0.7537 1.2320 0.9341 1.1576 1.1563Maximum daily loss -16.35% -9.16% -3.65% -10.96% -3.96% -10.96%Theta -112.47% -37.89% 12.45% -8.06% 7.66% 7.64%

    Panel C: November 1, 2006 - May 31, 2009Sharpe ratio 0.7697 1.0588 0.7664 1.3681 1.1579 1.5526Sortino ratio 1.2706 1.7141 1.1110 2.3175 1.7958 2.6325Omega ratio 1.1416 1.2109 1.1451 1.3279 1.2368 1.3851Maximum daily loss -12.58% -7.43% -7.09% -8.05% -6.25% -8.05%Theta -8.83% 19.04% 8.59% 28.79% 15.77% 34.08%

    Panel D: June 1, 2009 - December 30, 2011Sharpe ratio -0.9295 -0.3008 1.8812 0.6555 1.7468 1.5454Sortino ratio -1.4563 -0.4668 2.8551 1.1612 2.7270 2.8449Omega ratio 0.8483 0.9476 1.3662 1.1762 1.3516 1.4558Maximum daily loss -16.12% -8.64% -2.32% -9.65% -2.52% -9.65%Theta -122.63% -25.24% 18.58% 7.51% 17.09% 26.56%

    Table reports various performance measures for the excess returns, net of fees, on the two tracker ETNs (VXXand VXZ) the two ETN2 differential roll-yield strategies (XVIX and XVZ) and their static and dynamic ETN3

    combinations (CVIX and CVZ). The full sample is between March 26, 2004 and December 30, 2011.

    CVIX) and the dynamic, regime-dependant mix (i.e. the CVZ) have higher Sharpe ratios, Sortino

    ratios, Omega ratios and Theta than any of the existing ETNs. However, the XVIX outperforms

    both ETN3s during the first sub-sample and XVZ outperforms CVIX during the second sub-sample.

    CVZ experiences the same large drawdowns as the XVZ but they are still much smaller than those

    experienced on the VXX. According to the ultimate test of the manipulation-proof measure Theta,

    the CVZ is the preferred amongst all the ETNs except during the first sub-sample, when the XVIX

    performed best. As with the two ETN2s, the static CVIX outperforms the dynamic CVZ only

    during the stable trending market of the first sub-sample.

    5.3. The Minimum-Variance ETN

    Fig. 7 depicts the minimum-variance weights derived using Eq. (12), starting in March 28, 2005.

    They are fairly stable over time, generally in the range of [1, 1], except for the long-term contractsthat were trading on very low volumes until mid 2007. As expected, the minimum-variance portfolio

    is balanced, with long and short positions evenly distributed.

    VIX futures trading is very strongly concentrated on contracts that are relatively close to

    23

  • Jan06 Jan07 Jan08 Jan09 Jan10 Jan113

    2

    1

    0

    1

    2

    3

    4

    Minim

    um Va

    rianc

    e Weig

    hts

    30day 60day 90day 120day 150day 180day

    Fig. 7 Minimum variance weights on the constant-maturity VIX futures based on equally weighted covariancematrices computed using a rolling-window methodology.

    maturity. For instance, during the first two weeks of August 2011 the average daily volume of VIX

    futures traded was about 40,000 on the August contract, 34,000 on the September contract, 10,000

    on the October contract and then decreasing from about 7,500 on the November contract to less

    than a 1,000 contracts per day for the February and March 2012 expires. This was a volatile period

    and overnight risks might be considerably reduced by taking a more balanced exposure across the

    whole term structure, as prescribed by the minimum-variance portfolio, MVX.

    On each day between March 28, 2005 and December 30, 2011 we compute the equally weighted

    covariance matrix t on the ICM VIX futures contracts, based on the last 250 returns.27 The

    minimum-variance positions are kept for one day and the realized out-of-sample portfolio return

    is recorded. Then we roll the sample forward one day and repeat to obtain a series {rpit }Tt=N+1 ofout-of-sample returns on the minimum-variance portfolio.

    We label the ETN based on minimum variance portfolio weights the MVX. Indicative returns

    on the MVX can only be computed from March 2005, since we have (arbitrarily) employed a 1-year

    sample to estimate the required covariance matrix. Over the period March 2005 December 2011

    the MVX had a Sharpe ratio of 0.89 with a volatility of 23.58%, not including investor fees. Over

    the same period the volatility of the CVZ was only marginally higher (24.61%) and the CVIX had

    a much lower volatility (13.90%). This is possible because the minimum-variance allocation is only

    in-sample, and the returns are recorded out-of-sample.

    We now consider the diversification effectiveness of the MVX relative to a benchmark portfolio

    consisting of the VXX. That is, we set = 30 days in Eqs. (15) and (16) and use the RiskMetrics

    27We also used several other values for N , but the variance reduction was fairly robust to this choice. Results areavailable from the authors on request.

    24

  • Jan06 Jan07 Jan08 Jan09 Jan10 Jan1120%

    30%

    40%

    50%

    60%

    70%

    80%

    90%

    100%

    Varia

    nce R

    educ

    tion (

    E t)

    MVX XVIX XVZ CVIX CVZ

    Fig. 8 The variance reduction from exposure to MVX, or one of the new static or dynamic differential roll-yieldETNs, relative to an exposure to VXX. A figure of 90% indicates that the variance of the MVX (or other ETN) is10% of the variance of the VXX.

    value = 0.94 in Eq. (16) and hence compute the time series Et of variance reducation. For

    comparison, we also replace the variance of MVX by the variance of XVIX, of XVZ, CVIX and

    CVZ, yielding the five different time series of variance reduction effectiveness displayed in Fig. 8.

    Surprizingly, a the greatest variance reduction is achieved with the static ETN2 and ETN3, i.e. the

    XVIX and CVIX. These ETNs typically have variance between 5% and 20% of the VXX, in other

    words the variance reduction is between 95% and 80%. During the last two years, their variance has

    never exceeded 10% of the variance of VXX. This shows that it is difficult to construct allocations

    along the VIX term structure that have a lower volatility than the existing (and potential) static

    differential roll-yield ETNs.

    From the issuers perspective, the MVX has some advantages over single tracker products, which

    are hedged using only two VIX futures contracts. Concentrated exposures often incur margin calls,

    especially during volatile periods, but margin costs for a diversified portfolio should be very small

    because the exposure is balanced: brokers typically charge only a few basis points on the difference

    between interest earned on the margin when the futures price rises, and interest paid on the margin

    when the futures price falls. On the other hand, diversifying a concentrated exposure along the term

    structure incurs a hedging cost all along the curve. Apart from considering the internal activities

    of the bank, the attraction of issuing a diversified ETN such as MVX will depend on the relative

    size of fees and hedging costs plus costs of maintaining a margin account.

    5.4. Risk and Return on ETN2 and ETN3

    Here we present a detailed analysis of the risk-returns profile of all the ETN2 and ETN3 prod-

    ucts considered so far. Fig. 9 presents a rolling picture of the Sharpe ratio, mean daily return

    25

  • (annualized) and the annual volatility of the ETN2 and ETN3 products, including the minimum-

    variance ETN (MVX). Each statistic is computed using a sample of the previous 250 days, then

    the sample is rolled over daily and the statistics are re-calculated.

    Jan06 Jan07 Jan08 Jan09 Jan10 Jan112.00

    0

    2.00

    4.00

    6.00

    Shar

    pe R

    atio

    Jan06 Jan07 Jan08 Jan09 Jan10 Jan1140%

    0%

    40%

    80%

    120%

    Mea

    n Re

    turn

    Jan06 Jan07 Jan08 Jan09 Jan10 Jan110

    12.5%

    25%

    37.5%

    50%

    Vola

    tility

    XVIX XVZ CVIX CVZ MVX

    Fig. 9 Sharpe ratio, mean and volatility computed ex-post using the previous 250 days of returns on the ETN2 andETN3 and on the minimum-variance ETN (MVX), March 2005 December 2011.

    Whilst the dynamic products XVZ and CVZ have a consistently higher volatility, they also have

    an extremely large return in Q4 2008, at the onset of the banking crisis. Surprizingly, the MVX

    also has a very good return indeed it produced the best performance of all at the end of 2007

    and in Q2 2010. The two static ETNs, the XVIX and CVIX, have the lowest volatility throughout

    and a consistently positive mean return until the end of the sample. Unfortunately, during 2011

    these static strategies performed very badly indeed, with a Sharpe ratio rapidly falling from an

    unprecedented high of almost 5 (!) into negative territory within the space of 12 months. The

    Sharpe ratio of all ETNs fell during this period, and the CVZ it is the only one of the seven ETNs

    that consistently held a positive mean return, when computed over the previous 250 days, over the

    entire sample period.

    5.5. Comparison with Standard Asset Classes

    Next we compare the performance of the proposed ETN3 products with the performance of

    standard asset classes (US equities, commodities and bonds) and assess the potential for diversi-

    fication of investments in standard assets by allocating a portion of capital to the CVIX or the

    26

  • CVZ. To proxy the US equity market we use the S&P 500 stock index; to proxy the US commodity

    market we employ the S&P GSCI commodity index (SPGSCI) which allocates between the major

    physical commodities that have active futures traded on US exchanges; and as a proxy for the US

    fixed income market we use the Barclays Aggregate Bond Fund (AGG) which corresponds to the

    performance of the total US investment grade bond market. We subtract a proxy for the risk-free

    rate (91-day U.S. T-bill) from the returns on all variables to construct excess over the risk-free rate

    returns. Again, we use the longest possible historical period (almost 8 years) for this analysis.

    Table 8

    Descriptive statistics and correlation matrix of ETN3s and traditional asset classes.

    Panel A: Summary statisticsAnnualized Mean Volatility Sharpe Ratio Skewness Kurtosis Total Return

    CVIX 16.32% 13.72% 1.1896 0.15 6.68 232.95%CVZ 30.80% 23.49% 1.3111 1.48 18.92 798.35%S&P 500 2.75% 22.17% 0.1239 -0.04 9.93 2.28%SPGSCI 3.68% 5.77% 0.6383 -2.60 73.50 31.67%AGG 13.05% 26.90% 0.4850 -0.14 2.03 109.02%

    Panel B: CorrelationsCVIX CVZ S&P 500 SPGSCI AGG VIX

    CVIX 1.00CVZ 0.80 1.00S&P 500 -0.35 -0.53 1.00SPGSCI -0.11 -0.17 0.33 1.00AGG 0.11 0.04 -0.12 0.01 1.00VIX 0.24 0.40 -0.75 -0.24 0.11 1.00

    Panel A reports the summary statistics for daily excess returns on the two volatility ETN3 products that we propose,and compares them with those for the S&P 500, the SPGSCI commodity index and the AGG bond index. Samplemeans, standard deviations and corresponding Sharpe ratios are annualized based on 250 trading days per year.Panel B is the correlation matrix for these returns and the VIX. The sample is March 26, 2004 to December 30, 2011.

    Table 8 reports the results. Panel A shows that the ETN3 products clearly outperformed the

    three standard asset classes. Investing in commodities was profitable but highly risky and the

    Sharpe ratio for commodities is much worse than those of the ETN3s. Results are even worse for

    the other two asset classes; investing in equity would have been only marginally profitable with an

    annualized mean return of just 2.75%. Moreover, if a fund manager had employed a buy-and-hold

    strategy over the whole period he would have experienced a return of just 2.28%. Investment in

    the bond market would have yielded the highest total return of the three conventional asset classes,

    but it is still far less than the return that could have been realized had the CVIX and CVZ been

    available to investors. Total returns from buy-and-hold from March 2004 to December 2011 were

    almost 235% for the CVIX and almost 800% for the CVZ. The CVIX has negligible skewness and

    relatively low kurtosis. Whilst the CVZ has a high kurtosis (almost 19) it also has a strong positive

    skewness, so extreme positive returns have been more common than extreme negative returns.

    A considerable potential for diversification with standard asset classes is also offered by the

    CVIX, and even more so by the CVZ. Panel B of Table 8 shows that both ETNs have a weak

    positive correlation with the VIX index and a strong negative correlation with the S&P 500 equity

    index. They also display a small negative correlation with the SPGSCI commodity index and the

    CVIX has a small positive correlation with the AGG bond index. By comparison, the correlation

    27

  • between the S&P 500 and the SPGSCI indices is, at 0.33, relatively strong. Moreover, the CVZ

    has a correlation with the AGG bond index that is insignificantly different from zero.

    6. Hedging ETNs: Concerns for Issuers and Regulators

    The holder of an ETN has the right to redeem early (typically in lots of 25,000 shares) at the

    closing indicative value one business day after the holder gives notice (through his broker) of the

    redemption. During volatile periods early redemptions can be extremely large. For instance, during

    the first few days of the Euro crisis in August 2011 the number of VXX shares outstanding more

    or less halved, from 42 million to 21 million. The early redemption features of ETNs require the

    issuer to secure a profit through hedging his exposure daily, to earn at least the annual service fee

    after accounting for hedging costs.

    In this section we derive expressions for net assets and liabilities on the hedging account; we illus-

    trate the extent of profits that can be made by banks that issue ETNs, using some straightforward

    examples; we perform a scenario analysis, which issuers should be employing for risk management;

    and explain to regulators the mechanics (including various avenues for front-running) of the hedging

    activities that tie the NYSE with the CBOE.

    6.1. Perfect Hedges Based on Indicative Values

    Let xmt denote the net liability facing the issuer of a single constant-maturity tracker ETN, with

    maturity m, on day t. Let rmt+1 denote the return on the m-maturity S&P index from day t to day

    t+ 1, which is given by Eq. (2). Let fm denote the (daily equivalent) constant investment fee and

    let r denote the daily return on the risk-free asset. Then from day t to day t + 1 the liability xmt

    changes to

    xmt+1 = xmt (1 + r

    mt+1 + r fm).

    The assets held by the issuer in the risk-free asset are xm0 on the day of issue and thereafter the

    assets ymt on day t grow at the risk-free rate r, plus the P&L from the hedge of his liabilities on

    day t. Suppose the issuer hedges his liabilities xmt at time t using the synthetic m-maturity futures.

    Ignoring any margin costs, taking an exposure of xmt in the futures with return rmt+1 adds the P&L

    xmt rmt+1 to the issuers assets, so that in the absence of transaction costs his total assets at time

    t+ 1 would be given by ymt (1 + r) + xmt r

    mt+1. However, there is a small daily transaction cost of

    hmt+1 =smt+12|xmt + 1 xmt (1 + rmt+1)|

    arising from rebalancing the positions in the two futures that straddle the target maturity.28 Here

    28Recall that during a weekday the amount (l s)1, which is usually 1/28 or 1/32 of the exposure, is transferredfrom the shorter to the longer maturity futures. Over a weekend it is 3 times this amount.

    28

  • smt represents the bid-ask spread for an m-maturity futures exposure on day t.29 Hence,

    ymt+1 = ymt (1 + r) + x

    mt r

    mt+1 hmt+1.

    Thus, the net assets (i.e. assets liabilities) at time t+ 1 are given by

    zmt+1 = ymt+1 xmt+1 = (ymt xmt )(1 + r) + xmt fm hmt+1. (17)

    6.2. Empirical Examples

    Fig. 10 depicts three empirical examples showing, on the left, the daily average flow of fees and

    hedging costs, averaged over the previous month. The right-hand graphs depict the cumulative

    net assets accruing to the issuer of ETNs, as a proportion of the current liability. The examples

    are: (i) an initial issue of equal amounts in the 30-day tracker VXX and its inverse tracker, the

    AAVX; (ii) an initial issue of XVIX, plus two-thirds of this exposure in the inverse 150-day tracker

    and one-third in the direct 30-day tracker; and (iii) an initial issue of equal amounts on the XVIX,

    and the four direct and inverse trackers at 30-day and 150-day maturities, i.e. five ETNs in all.

    We suppose all shares in issue were sold on the primary market on March 30, 2004 and that the

    number of shares outstanding is assumed constant, i.e. there are number issues of shares less the

    shares redeemed early on any day is assumed constant.

    The net asset path (assets minus liabilities) is not shown, but it grows monotonically over the

    entire period in all three cases. Net assets as a proportion of the current liabilities also remains

    positive over the entire period even though the fees earned cover the hedging costs only in case

    (i) and (iii). In case (ii) the excess of hedging costs over fees earned erodes the asset side of the

    balance sheet so that they are much less than in cases (i) and (iii).

    Of course, the initial exposures change over time. In particular, the liabilities for direct and

    inverse trackers vary inversely, so that the liability to the inverse tracker grows when the liability to

    the direct tracker falls. For this reason the net assets can fall, as a proportion of the liabilities. For

    instance, by March 20, 2009 the net assets in case (i) i.e. an initial issue of equal dollar amounts

    in VXX and AAVX had risen to nearly 85% of the current liability, net of fees and hedging

    costs. But one year later, by March 20, 2010 it had fallen steadily too less than 30% of the current

    liability. This is because the liability to the inverse tracker was gradually rising during the long

    contango market following the banking crisis. Clearly the issuer of a suite of products may find it

    advantageous to issue further notes in direct tracker products at such times, if possible. This way,

    the basket of ETNs can be kept in balance so that not only the net assets are always growing, but

    also net assets are always growing as a proportion of the current liability.

    29In the next section we report an empirical analysis of net assets accruing to the issuer of ETNs over time,reporting fees and hedging costs separately. Here we assume constant spreads of 25bps for the 30-day and 30bps forthe 150-day trackers. It is true that spreads have decreased dramatically over time, but our purpose is to assess theprofitability of a potential future issuance of ETNs, so it is appropriate to assume hedging costs are fixed at theircurrent size.

    29

  • Jan05 Jan06 Jan07 Jan08 Jan09 Jan10 Jan110

    5

    10

    15Long tracker and inverse

    Jan05 Jan06 Jan07 Jan08 Jan09 Jan10 Jan110

    20%

    40%

    60%

    80%

    100%Long tracker and inverse

    Jan05 Jan06 Jan07 Jan08 Jan09 Jan10 Jan110

    0.5

    1

    1.5

    2Suite of three